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Honours and Minor Thesis projects

Displaying 101 - 110 of 216 honours projects.


Primary supervisor: David Dowe

Turning Point’s National Ambulance Surveillance System is a surveillance database comprising enriched ambulance clinical data relating to alcohol and other substance use, suicidal and self-injurious thoughts and behaviours, and mental health-related harms in the Australian population. These data are used to inform policy and intervention design and are the subject of ever-increasing demand from academic professionals and units, government departments, and non-government organisations.

 

Primary supervisor: David Dowe

Develop, implement, and test deep learning techniques for automatic classification of epileptic seizures using video data of seizures

Primary supervisor: Levin Kuhlmann

This project takes a different approach to RL, inspired by evidence that Hippocampus replays to the frontal cortex directly. It is likely used for model building, as opposed to the mainstream view in cognitive science and ML - where 'experience replay' ultimately improves policy. The predicted benefits are sample efficiency, better ability to generalize to new tasks and an ability to learn new tasks without forgetting old ones.

Primary supervisor: Levin Kuhlmann

The brains of all bilaterally symmetric animals on Earth are divided into left and right hemispheres. The anatomy and functionality of the hemispheres have a large degree of overlap, but they specialize to possess different attributes. This principle is poorly understood and has not been exploited in AI/ML. The right hemisphere is more dominant for novelty, and the left for routine. Activity slowly moves to the left hemisphere as a task is perfected. In this project, we apply that principle to continual RL, where new tasks are introduced over time…

Primary supervisor: Levin Kuhlmann

The hippocampus is critical for episodic memory, a key component of intelligence, and a sense of self. There are a number of computational models, but none of them consider the fact that the hippocampus is, like the rest of the brain, divided into Left and Right hemispheres. Division into Left and Right is poorly understood, but undoubtedly critical, as it is a remarkably conserved feature of all bilaterally symmetric animals on Earth.

Primary supervisor: Levin Kuhlmann

The brains of all bilaterally symmetric animals on Earth are divided into left and right hemispheres. The anatomy and functionality of the hemispheres have a large degree of overlap, but they specialize to possess different attributes. This principle is poorly understood and has not been exploited in AI/ML. Previously, we mimicked biological differences between hemispheres, and achieved specialization and superior performance in a classification task that matched behavioral observations.

Primary supervisor: David Taniar
Patient Registry

Are you interested in applying your database knowledge to a real project? This project aims to develop a patient registry for hospitals around Australia. This is a collaboration with the Faculty of Medicine, Monash University. We will be building a central database or a data warehouse repository to store patient admission to the hospitals.

Primary supervisor: Xiao Chen

Smart TV has become the dominant TV type nowadays. More and more users are switching from traditional TVs to Smart TVs. Despite the growing momentum of the smart TV industry (particularly in terms of the number of TV devices accessible in the Android ecosystem), the number of currently available TV apps is significantly less than the number of existing smartphone apps. There is an easily overlooked gap between the smartphone developers and smart TV (hereafter, TV) apps, leaving the prospect of TV apps behind the smartphone.

Primary supervisor: David Taniar

Medical imaging segmentation

Are you interested in applying your AI/DL knowledge to the medical domain?

Primary supervisor: David Dowe

Using relevant available data-sets, we compare appliance usage across households of different demographics.  We then use machine learning techniques to infer how different households use different appliances at different times, resulting in diverse energy consumption behaviours.